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Journal ArticleDOI

Single and Multiple Object Tracking Using Log-Euclidean Riemannian Subspace and Block-Division Appearance Model

TLDR
A log-euclidean block-division appearance model is developed which captures both the global and local spatial layout information about object appearances and which obtains more accurate results than six state-of-the-art tracking algorithms.
Abstract
Object appearance modeling is crucial for tracking objects, especially in videos captured by nonstationary cameras and for reasoning about occlusions between multiple moving objects. Based on the log-euclidean Riemannian metric on symmetric positive definite matrices, we propose an incremental log-euclidean Riemannian subspace learning algorithm in which covariance matrices of image features are mapped into a vector space with the log-euclidean Riemannian metric. Based on the subspace learning algorithm, we develop a log-euclidean block-division appearance model which captures both the global and local spatial layout information about object appearances. Single object tracking and multi-object tracking with occlusion reasoning are then achieved by particle filtering-based Bayesian state inference. During tracking, incremental updating of the log-euclidean block-division appearance model captures changes in object appearance. For multi-object tracking, the appearance models of the objects can be updated even in the presence of occlusions. Experimental results demonstrate that the proposed tracking algorithm obtains more accurate results than six state-of-the-art tracking algorithms.

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Citations
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Journal ArticleDOI

A survey of appearance models in visual object tracking

TL;DR: A detailed review of the existing 2D appearance models for visual object tracking can be found in this article, where the authors decompose the problem of appearance modeling into two different processing stages: visual representation and statistical modeling.
Posted Content

A Survey of Appearance Models in Visual Object Tracking

TL;DR: This survey provides a detailed review of the existing 2D appearance models for visual object tracking and takes a module-based architecture that enables readers to easily grasp the key points ofVisual object tracking.
Book ChapterDOI

Transfer Learning Based Visual Tracking with Gaussian Processes Regression

TL;DR: This paper directly analyze this probability of target appearance as exponentially related to the confidence of a classifier output using Gaussian Processes Regression (GPR), and introduces a latent variable to assist the tracking decision.
Journal ArticleDOI

Multiple object tracking: A literature review

TL;DR: This work provides a thorough review on the development of this problem in recent decades and inspects the recent advances in various aspects and proposes some interesting directions for future research.
Proceedings ArticleDOI

Online Multi-object Tracking Using CNN-Based Single Object Tracker with Spatial-Temporal Attention Mechanism

TL;DR: Zhang et al. as mentioned in this paper proposed a spatial-temporal attention mechanism (STAM) to handle the drift caused by occlusion and interaction among targets, which can be considered as temporal attention mechanism.
References
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Proceedings ArticleDOI

Adaptive background mixture models for real-time tracking

TL;DR: This paper discusses modeling each pixel as a mixture of Gaussians and using an on-line approximation to update the model, resulting in a stable, real-time outdoor tracker which reliably deals with lighting changes, repetitive motions from clutter, and long-term scene changes.
Journal ArticleDOI

Incremental Learning for Robust Visual Tracking

TL;DR: A tracking method that incrementally learns a low-dimensional subspace representation, efficiently adapting online to changes in the appearance of the target, and includes a method for correctly updating the sample mean and a forgetting factor to ensure less modeling power is expended fitting older observations.
Proceedings ArticleDOI

Visual tracking with online Multiple Instance Learning

TL;DR: It is shown that using Multiple Instance Learning (MIL) instead of traditional supervised learning avoids these problems, and can therefore lead to a more robust tracker with fewer parameter tweaks.
Journal ArticleDOI

A Riemannian Framework for Tensor Computing

TL;DR: This paper proposes to endow the tensor space with an affine-invariant Riemannian metric and demonstrates that it leads to strong theoretical properties: the cone of positive definite symmetric matrices is replaced by a regular and complete manifold without boundaries, the geodesic between two tensors and the mean of a set of tensors are uniquely defined.
Journal ArticleDOI

EigenTracking: Robust Matching and Tracking of Articulated Objects Using a View-Based Representation

TL;DR: A “subspace constancy assumption” is defined that allows techniques for parameterized optical flow estimation to simultaneously solve for the view of an object and the affine transformation between the eigenspace and the image.
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